Accurate Intervertebral Disc Segmentation Approach Based on Deep Learning.
Yu-Kai ChengChih-Lung LinYi-Chi HuangGuo-Shiang LinZhen-You LianCheng-Hung ChuangPublished in: Diagnostics (Basel, Switzerland) (2024)
Automatically segmenting specific tissues or structures from medical images is a straightforward task for deep learning models. However, identifying a few specific objects from a group of similar targets can be a challenging task. This study focuses on the segmentation of certain specific intervertebral discs from lateral spine images acquired from an MRI scanner. In this research, an approach is proposed that utilizes MultiResUNet models and employs saliency maps for target intervertebral disc segmentation. First, a sub-image cropping method is used to separate the target discs. This method uses MultiResUNet to predict the saliency maps of target discs and crop sub-images for easier segmentation. Then, MultiResUNet is used to segment the target discs in these sub-images. The distance maps of the segmented discs are then calculated and combined with their original image for data augmentation to predict the remaining target discs. The training set and test set use 2674 and 308 MRI images, respectively. Experimental results demonstrate that the proposed method significantly enhances segmentation accuracy to about 98%. The performance of this approach highlights its effectiveness in segmenting specific intervertebral discs from closely similar discs.
Keyphrases
- deep learning
- convolutional neural network
- artificial intelligence
- machine learning
- magnetic resonance imaging
- randomized controlled trial
- healthcare
- contrast enhanced
- gene expression
- high resolution
- climate change
- magnetic resonance
- computed tomography
- minimally invasive
- mass spectrometry
- soft tissue
- virtual reality